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Fast and robust image segmentation by small-world neural oscillator networks

机译:小世界神经振荡器网络对图像进行快速而鲁棒的分割

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摘要

Inspired by the temporal correlation theory of brain functions, researchers have presented a number of neural oscillator networks to implement visual scene segmentation problems. Recently, it is shown that many biological neural networks are typical small-world networks. In this paper, we propose and investigate two small-world models derived from the well-known LEGION (locally excitatory and globally inhibitory oscillator network) model. To form a small-world network, we add a proper proportion of unidirectional shortcuts (random long-range connections) to the original LEGION model. With local connections and shortcuts, the neural oscillators can not only communicate with neighbors but also exchange phase information with remote partners. Model 1 introduces excitatory shortcuts to enhance the synchronization within an oscillator group representing the same object. Model 2 goes further to replace the global inhibitor with a sparse set of inhibitory shortcuts. Simulation results indicate that the proposed small-world models could achieve synchronization faster than the original LEGION model and are more likely to bind disconnected image regions belonging together. In addition, we argue that these two models are more biologically plausible.
机译:受脑功能的时间相关理论的启发,研究人员提出了许多神经振荡器网络来实现视觉场景分割问题。最近,表明许多生物神经网络是典型的小世界网络。在本文中,我们提出并研究了两个从著名的LEGION(局部兴奋性和全局抑制性振荡器网络)模型衍生的小世界模型。为了形成一个小世界网络,我们向原始的LEGION模型中添加了适当比例的单向快捷方式(随机的远程连接)。通过本地连接和快捷方式,神经振荡器不仅可以与邻居通信,还可以与远程伙伴交换相位信息。模型1引入了激励捷径,以增强表示同一对象的振荡器组内的同步。模型2进一步用稀疏的抑制快捷方式集代替了全局抑制器。仿真结果表明,所提出的小世界模型比原始LEGION模型可以更快地实现同步,并且更有可能将属于它们的不连续图像区域绑定在一起。此外,我们认为这两个模型在生物学上更合理。

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